稳健的步态识别

Yasushi Makihara
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引用次数: 9

摘要

步态识别是一种根据人的无意识行走方式对人进行生物识别的方法。与DNA、指纹、静脉、虹膜等其他生物识别技术不同,即使在距离摄像机很远的地方也能识别出步态,无需受试者的配合,因此有望在刑事调查、法医学、监视等领域得到应用。然而,缺乏受试者的合作有时会引起受试者内部由于视点、行走方向、速度、衣服和鞋子的变化而产生的步态变化。因此,我们开发了鲁棒步态识别方法,包括:(1)基于外观的视图转换模型,(2)基于运动学的速度转换模型。此外,由于通信带宽和存储容量的限制,CCTV视频通常以低帧率的视频形式存储,这使得观察连续的步态运动变得更加困难,从而大大降低了步态识别的性能。因此,我们用(3)低帧率视频的周期性时间超分辨率技术来解决这个问题。我们用所构建的步态数据库证明了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Robust Gait Recognition
Gait recognition is a method of biometric person authentication from his/her unconscious walking manner. Unlike the other biometrics such as DNA, fingerprint, vein, and iris, the gait can be recognized even at a distance from a camera without subjects' cooperation, and hence it is expected to be applied to many fields: criminal investigation, forensic science, and surveillance. However, the absence of the subjects' cooperation may sometimes induces large intra-subject variations of the gait due to the changes of viewpoints, walking directions, speeds, clothes, and shoes. We therefore develop methods of robust gait recognition with (1) an appearance-based view transformation model, (2) a kinematics-based speed transformation model. Moreover, CCTV footages are often stored as low frame-rate videos due to limitation of communication bandwidth and storage size, which makes it much more difficult to observe a continuous gait motion and hence significantly degrades the gait recognition performance. We therefore solve this problem with (3) a technique of periodic temporal super resolution from a low frame-rate video. We show the efficiency of the proposed methods with our constructed gait databases.
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